Artificial intelligence applied to the classification of eight middle Eocene species of the genus Podocyrtis (polycystine radiolaria)

This study evaluates the application of artificial intelligence (AI) to the automatic classification of radiolarians and uses as an example eight distinct morphospecies of the Eocene radiolarian genus Podocyrtis , which are part of three different evolutionary lineages and are useful in biostratigra...

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Published in:Journal of Micropalaeontology
Main Authors: V. Carlsson, T. Danelian, P. Boulet, P. Devienne, A. Laforge, J. Renaudie
Format: Article in Journal/Newspaper
Language:English
Published: Copernicus Publications 2022
Subjects:
Online Access:https://doi.org/10.5194/jm-41-165-2022
https://doaj.org/article/d8e77342049a4bcf95dd7ebbfe30f4f4
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spelling ftdoajarticles:oai:doaj.org/article:d8e77342049a4bcf95dd7ebbfe30f4f4 2023-05-15T17:32:04+02:00 Artificial intelligence applied to the classification of eight middle Eocene species of the genus Podocyrtis (polycystine radiolaria) V. Carlsson T. Danelian P. Boulet P. Devienne A. Laforge J. Renaudie 2022-11-01T00:00:00Z https://doi.org/10.5194/jm-41-165-2022 https://doaj.org/article/d8e77342049a4bcf95dd7ebbfe30f4f4 EN eng Copernicus Publications https://jm.copernicus.org/articles/41/165/2022/jm-41-165-2022.pdf https://doaj.org/toc/0262-821X https://doaj.org/toc/2041-4978 doi:10.5194/jm-41-165-2022 0262-821X 2041-4978 https://doaj.org/article/d8e77342049a4bcf95dd7ebbfe30f4f4 Journal of Micropalaeontology, Vol 41, Pp 165-182 (2022) Geology QE1-996.5 article 2022 ftdoajarticles https://doi.org/10.5194/jm-41-165-2022 2022-12-30T21:37:49Z This study evaluates the application of artificial intelligence (AI) to the automatic classification of radiolarians and uses as an example eight distinct morphospecies of the Eocene radiolarian genus Podocyrtis , which are part of three different evolutionary lineages and are useful in biostratigraphy. The samples used in this study were recovered from the equatorial Atlantic (ODP Leg 207) and were supplemented with some samples coming from the North Atlantic and Indian Oceans. To create an automatic classification tool, numerous images of the investigated species were needed to train a MobileNet convolutional neural network entirely coded in Python. Three different datasets were obtained. The first one consists of a mixture of broken and complete specimens, some of which sometimes appear blurry. The second and third datasets were leveled down into two further steps, which excludes broken and blurry specimens while increasing the quality. The convolutional neural network randomly selected 85 % of all specimens for training, while the remaining 15 % were used for validation. The MobileNet architecture had an overall accuracy of about 91 % for all datasets. Three predicational models were thereafter created, which had been trained on each dataset and worked well for classification of Podocyrtis coming from the Indian Ocean (Madingley Rise, ODP Leg 115, Hole 711A) and the western North Atlantic Ocean (New Jersey slope, DSDP Leg 95, Hole 612 and Blake Nose, ODP Leg 171B, Hole 1051A). These samples also provided clearer images since they were mounted with Canada balsam rather than Norland epoxy. In spite of some morphological differences encountered in different parts of the world's oceans and differences in image quality, most species could be correctly classified or at least classified with a neighboring species along a lineage. Classification improved slightly for some species by cropping and/or removing background particles of images which did not segment properly in the image processing. However, depending on ... Article in Journal/Newspaper North Atlantic Directory of Open Access Journals: DOAJ Articles Canada Indian Journal of Micropalaeontology 41 2 165 182
institution Open Polar
collection Directory of Open Access Journals: DOAJ Articles
op_collection_id ftdoajarticles
language English
topic Geology
QE1-996.5
spellingShingle Geology
QE1-996.5
V. Carlsson
T. Danelian
P. Boulet
P. Devienne
A. Laforge
J. Renaudie
Artificial intelligence applied to the classification of eight middle Eocene species of the genus Podocyrtis (polycystine radiolaria)
topic_facet Geology
QE1-996.5
description This study evaluates the application of artificial intelligence (AI) to the automatic classification of radiolarians and uses as an example eight distinct morphospecies of the Eocene radiolarian genus Podocyrtis , which are part of three different evolutionary lineages and are useful in biostratigraphy. The samples used in this study were recovered from the equatorial Atlantic (ODP Leg 207) and were supplemented with some samples coming from the North Atlantic and Indian Oceans. To create an automatic classification tool, numerous images of the investigated species were needed to train a MobileNet convolutional neural network entirely coded in Python. Three different datasets were obtained. The first one consists of a mixture of broken and complete specimens, some of which sometimes appear blurry. The second and third datasets were leveled down into two further steps, which excludes broken and blurry specimens while increasing the quality. The convolutional neural network randomly selected 85 % of all specimens for training, while the remaining 15 % were used for validation. The MobileNet architecture had an overall accuracy of about 91 % for all datasets. Three predicational models were thereafter created, which had been trained on each dataset and worked well for classification of Podocyrtis coming from the Indian Ocean (Madingley Rise, ODP Leg 115, Hole 711A) and the western North Atlantic Ocean (New Jersey slope, DSDP Leg 95, Hole 612 and Blake Nose, ODP Leg 171B, Hole 1051A). These samples also provided clearer images since they were mounted with Canada balsam rather than Norland epoxy. In spite of some morphological differences encountered in different parts of the world's oceans and differences in image quality, most species could be correctly classified or at least classified with a neighboring species along a lineage. Classification improved slightly for some species by cropping and/or removing background particles of images which did not segment properly in the image processing. However, depending on ...
format Article in Journal/Newspaper
author V. Carlsson
T. Danelian
P. Boulet
P. Devienne
A. Laforge
J. Renaudie
author_facet V. Carlsson
T. Danelian
P. Boulet
P. Devienne
A. Laforge
J. Renaudie
author_sort V. Carlsson
title Artificial intelligence applied to the classification of eight middle Eocene species of the genus Podocyrtis (polycystine radiolaria)
title_short Artificial intelligence applied to the classification of eight middle Eocene species of the genus Podocyrtis (polycystine radiolaria)
title_full Artificial intelligence applied to the classification of eight middle Eocene species of the genus Podocyrtis (polycystine radiolaria)
title_fullStr Artificial intelligence applied to the classification of eight middle Eocene species of the genus Podocyrtis (polycystine radiolaria)
title_full_unstemmed Artificial intelligence applied to the classification of eight middle Eocene species of the genus Podocyrtis (polycystine radiolaria)
title_sort artificial intelligence applied to the classification of eight middle eocene species of the genus podocyrtis (polycystine radiolaria)
publisher Copernicus Publications
publishDate 2022
url https://doi.org/10.5194/jm-41-165-2022
https://doaj.org/article/d8e77342049a4bcf95dd7ebbfe30f4f4
geographic Canada
Indian
geographic_facet Canada
Indian
genre North Atlantic
genre_facet North Atlantic
op_source Journal of Micropalaeontology, Vol 41, Pp 165-182 (2022)
op_relation https://jm.copernicus.org/articles/41/165/2022/jm-41-165-2022.pdf
https://doaj.org/toc/0262-821X
https://doaj.org/toc/2041-4978
doi:10.5194/jm-41-165-2022
0262-821X
2041-4978
https://doaj.org/article/d8e77342049a4bcf95dd7ebbfe30f4f4
op_doi https://doi.org/10.5194/jm-41-165-2022
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